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X-DenseNet: Deep Learning for Garbage Classification Based on Visual Images

Meng Sha, Ning Zhang, Yunwen Ren

2020Journal of Physics Conference Series21 citationsDOIOpen Access PDF

Abstract

Abstract In order to effectively solve the problem of garbage classification, this paper designs a garbage classification model based on deep convolutional neural network. Based on Xception network, combined with the idea of dense connections and multi-scale feature fusion in DenseNet, the X-DenseNet is constructed to classify the garbage images obtained by visual sensors. This paper conducts experiments through the process of “obtaining dataset-preprocessing data-building X-DenseNet model-training and testing model” and the accuracy of the model on the testing set is up to 94.1%, which exceeds some classic classification networks. The X-DenseNet automatic garbage classification model based on visual images proposed in this paper can effectively reduce manual investment and improve the garbage recovery rate. It has the vital scientific significance and application value.

Topics & Concepts

GarbageComputer sciencePreprocessorConvolutional neural networkArtificial intelligenceData pre-processingFeature (linguistics)Deep learningProcess (computing)Artificial neural networkPattern recognition (psychology)Data miningMachine learningLinguisticsProgramming languageOperating systemPhilosophyAdvanced Neural Network ApplicationsMunicipal Solid Waste ManagementInfrastructure Maintenance and Monitoring
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